基于机器学习和特征融合处理的自然语言准确识别

H. M. Salman, Vian S. Al-Doori, Hayder Sharif, Wasfi Hameed4, Rusul S. Bader
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引用次数: 0

摘要

为了提高汉语语音评价和语音识别系统的性能,研究人员正致力于开发基于深度学习的计算机辅助系统,用于数据、特征和决策的多层次融合处理的智能技术。这些系统采用分数级融合、等级级融合和混合级融合相结合,融合优化和融合分数改进,可以有效地将多个模型和传感器组合在一起,提高信息融合的精度。此外,用于信息融合的智能系统,包括用于机器人和决策的智能系统,可以从用于数据融合的多媒体数据融合和机器学习等技术中受益。此外,优化算法和模糊方法可用于云环境和电子系统中的数据融合应用,而空间数据融合可用于提高图像和特征数据的质量。本文提出了一种新的方法来识别连续语音中的声调语言。本文提出了一种基于机器学习辅助的自动语音识别框架(ML-ASRF),用于汉字和语言预测。我们的研究重点是提取高度鲁棒的特征,并结合深度模型的各种语音信号序列。实验结果表明,机器学习神经网络识别率明显高于传统语音识别算法,实现了更精确的人机交互,提高了汉语语音准确率的判定效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accurate Recognition of Natural language Using Machine Learning and Feature Fusion Processing
To enhance the performance of Chinese language pronunciation evaluation and speech recognition systems, researchers are focusing on developing intelligent techniques for multilevel fusion processing of data, features, and decisions using deep learning-based computer-aided systems. With a combination of score level, rank level, and hybrid level fusion, as well as fusion optimization and fusion score improvement, these systems can effectively combine multiple models and sensors to improve the accuracy of information fusion. Additionally, intelligent systems for information fusion, including those used in robotics and decision-making, can benefit from techniques such as multimedia data fusion and machine learning for data fusion. Furthermore, optimization algorithms and fuzzy approaches can be applied to data fusion applications in cloud environments and e-systems, while spatial data fusion can be used to enhance the quality of image and feature data In this paper, a new approach has been presented to identify the tonal language in continuous speech. This study proposes the Machine learning-assisted automatic speech recognition framework (ML-ASRF) for Chinese character and language prediction. Our focus is on extracting highly robust features and combining various speech signal sequences of deep models. The experimental results demonstrated that the machine learning neural network recognition rate is considerably higher than that of the conventional speech recognition algorithm, which performs more accurate human-computer interaction and increases the efficiency of determining Chinese language pronunciation accuracy.
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